Showing posts with label Internship Roadmap. Show all posts
Showing posts with label Internship Roadmap. Show all posts

Thursday, 16 July 2026

Internship Roadmap

 









Year 1 Internship Roadmap 


Week 1 

– Introduction to the Corporate World & Data Analytics

Objective: 

Understand how companies work and where data analytics fits.

Topics

  • Company orientation

  • Different departments in an organization

  • What does a Data Analyst actually do?

  • Difference between:

    • Data Analyst

    • Business Analyst

    • Data Scientist

    • Data Engineer

    • ML Engineer

  • The data analytics lifecycle

  • Common tools used in industry

Week 2 – Business Fundamentals for Data Analysts

Objective: Learn the language of business.

Topics

  • How companies make money

  • Revenue vs Profit

  • Cost vs Investment

  • KPIs

  • Customer journey

  • Conversion funnel

  • Business models

  • Decision-making using data

Choose any company (Amazon, Flipkart, Swiggy, etc.) and explain how data analytics supports its business.

Week 3 – Thinking Like an Analyst

Objective: Develop analytical thinking.

Topics

  • Defining business problems

  • Asking the right questions

  • Root Cause Analysis (5 Whys)

  • Fishbone Diagram (Ishikawa)

  • Critical thinking

  • Structured problem solving

Analyze a business problem (e.g., declining website traffic) and list:

  • Questions to ask

  • Possible causes

  • Data required

  • Potential solutions

Week 4 – Data Quality & Data Ethics

Objective: Understand why clean and ethical data matters.

Topics

  • Data quality dimensions

  • Missing values

  • Duplicate records

  • Data validation

  • GDPR

  • PII

  • Data privacy

  • Responsible AI

Write a case study on a real-world data breach and discuss its business impact.

Week 5 – Understanding Business Metrics

Objective: Learn the metrics that companies monitor.

Topics

  • CAC

  • CLV

  • Churn Rate

  • ROI

  • Gross Margin

  • Net Profit

  • Conversion Rate

  • Bounce Rate

  • Retention Rate

Create a glossary explaining each metric with a practical example.

Week 6 – Data Storytelling & Communication

Objective: Learn to communicate insights effectively.

Topics

  • Storytelling with data

  • Choosing the right chart

  • Presenting to non-technical stakeholders

  • Executive summaries

  • Presentation skills

Week 7 – Corporate Skills

Objective: Build professional workplace habits.

Topics

  • Professional email writing

  • Meeting etiquette

  • Daily status reports

  • Weekly reports

  • Documentation

  • Time management

  • Team collaboration

  • Receiving and acting on feedback

Week 8 – Industry Research & Presentation

Objective: Connect theory with practice.

Topics

  • Case studies:

    • Netflix

    • Amazon

    • Uber

    • Spotify

    • Banking fraud detection

"How Data Analytics Solves Real Business Problems"

Year 2 Internship Roadmap

Week 1 – Working with Real-World Data

Topics

  • Difference between academic datasets and company datasets

  • Types of business data

  • Structured vs Unstructured Data

  • Sources of data

  • Data collection methods

  • Importance of data accuracy

Research different types of business data and explain where companies collect them from.

Week 2 – Excel for Business

Topics

  • Why companies still use Excel

  • Sorting and Filtering

  • Conditional Formatting

  • Basic formulas

  • Pivot Tables

  • Charts

  • Organizing data

Week 3 – Introduction to SQL in Business

Topics

  • What is SQL?

  • Why businesses use databases

  • Basic SQL queries

  • Filtering data

  • Sorting results

  • Aggregate functions

  • GROUP BY

Write SQL queries to answer simple business questions (e.g., highest sales, total orders, average revenue).

Week 4 – Understanding Business Metrics

Topics

  • Revenue

  • Profit

  • Sales

  • Customer

  • Conversion Rate

  • Website Traffic

  • Bounce Rate

  • Customer Satisfaction

Choose a company and identify five important metrics they should track

Week 5 – Data Visualization

Topics

  • Why graphs are important

  • Choosing the right chart

  • Common visualization mistakes

  • Storytelling with charts

  • Presenting insights clearly

Week 6 – AI Tools for Data Analysis

Topics

  • ChatGPT

  • Gemini

  • Claude

  • NotebookLM

  • Responsible use of AI

  • Writing effective prompts

Assignment

Compare three AI tools and explain how each can help a Data Analyst in daily work.

Week 7 – Corporate Skills

Topics

  • Professional emails

  • Team communication

  • Meeting etiquette

  • Daily work reports

  • Time management

  • Receiving feedback

  • Workplace professionalism

Week 8 – Final Business Case Study

Task

Choose one company (Amazon, Swiggy, Zomato, Flipkart, Netflix, etc.) and prepare a report covering:

  • What the company does

  • What data it collects

  • Why that data is valuable

  • Three business problems data can solve

  • Five KPIs the company should monitor

  • Recommendations based on your analysis






linkedin.com/in/chandramouli02 

  • Link tree:

https://linktr.ee/chandramouliii 

  • Vcard:

https://linko.page/chandramoulii